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Hyperparameter Optimization with Genetic Algorithms and XGBoost: A Step Forward in Smart Grid Fraud Detection

Adil Mehdary, Abdellah Chehri, Abdeslam Jakimi, Rachid Saadane

2024Sensors74 citationsDOIOpen Access PDF

Abstract

This study provides a comprehensive analysis of the combination of Genetic Algorithms (GA) and XGBoost, a well-known machine-learning model. The primary emphasis lies in hyperparameter optimization for fraud detection in smart grid applications. The empirical findings demonstrate a noteworthy enhancement in the model's performance metrics following optimization, particularly emphasizing a substantial increase in accuracy from 0.82 to 0.978. The precision, recall, and AUROC metrics demonstrate a clear improvement, indicating the effectiveness of optimizing the XGBoost model for fraud detection. The findings from our study significantly contribute to the expanding field of smart grid fraud detection. These results emphasize the potential uses of advanced metaheuristic algorithms to optimize complex machine-learning models. This work showcases significant progress in enhancing the accuracy and efficiency of fraud detection systems in smart grids.

Topics & Concepts

HyperparameterHyperparameter optimizationComputer scienceMachine learningGenetic algorithmPrecision and recallArtificial intelligenceAlgorithmMetaheuristicGridSmart gridData miningSupport vector machineEngineeringMathematicsGeometryElectrical engineeringElectricity Theft Detection TechniquesImbalanced Data Classification TechniquesMachine Learning and Data Classification
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